Toward Autonomy: Metacognitive Learning for Enhanced AI Performance

Brendan Conway-Smith, Robert L. West
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引用次数: 1

Abstract

Large Language Models (LLMs) lack robust metacognitive learning abilities and depend on human-provided algorithms and prompts for learning and output generation. Metacognition involves processes that monitor and enhance cognition. Learning how to learn - metacognitive learning - is crucial for adapting and optimizing learning strategies over time. Although LLMs possess limited metacognitive abilities, they cannot autonomously refine or optimize these strategies. Humans possess innate mechanisms for metacognitive learning that enable at least two unique abilities: discerning which metacognitive strategies are best and automatizing learning strategies. These processes have been effectively modeled in the ACT-R cognitive architecture, providing insights on a path toward greater learning autonomy in AI. Incorporating human-like metacognitive learning abilities into AI could potentially lead to the development of more autonomous and versatile learning mechanisms, as well as improved problem-solving capabilities and performance across diverse tasks.
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迈向自主:元认知学习提升人工智能性能
大型语言模型(LLM)缺乏强大的元认知学习能力,其学习和输出生成依赖于人类提供的算法和提示。元认知涉及监测和增强认知的过程。学会如何学习--元认知学习--对于随着时间的推移调整和优化学习策略至关重要。虽然低等语言学习者拥有有限的元认知能力,但他们无法自主完善或优化这些策略。人类拥有与生俱来的元认知学习机制,至少可以实现两种独特的能力:辨别哪种元认知策略是最好的,以及将学习策略自动化。ACT-R 认知架构对这些过程进行了有效建模,为人工智能实现更高的学习自主性提供了启示。将类似人类的元认知学习能力融入人工智能,有可能开发出更加自主和多用途的学习机制,并提高解决问题的能力和完成各种任务的性能。
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